Dynamic normalization supervised contrastive network with multiscale compound attention mechanism for gearbox imbalanced fault diagnosis

Yutong Dong, Hongkai Jiang, Wenxin Jiang, Lianbing Xie

Research output: Contribution to journalArticlepeer-review

47 Scopus citations

Abstract

Deep learning has gained significant success in fault diagnosis. However, the number of gearbox health samples is inevitably much larger than that of fault samples in real-world engineering, which severely limits the diagnostic performance of such methods. Thus, this paper put forward a dynamic normalization supervised contrastive network (DNSCN) with a multiscale compound attention mechanism to recognize imbalanced gearbox faults. First, a multiscale adaptive feature extractor (MAFE) possessing branch weight adjustment capability has been devised to serve as a contrastive learning backbone to effectively mine signal features. Second, a multiscale compound attention mechanism is designed to reweight the features from the MAFE, thus improving the accuracy and confidence of fault recognition. Third, a dynamic normalized supervised contrastive loss function for imbalanced scenarios is presented. It balances the contributions of minority and hard-to-classify samples in the loss function using class normalization and dynamic adjustment based on the training accuracy, respectively. DNSCN achieved accuracies of 91.58% and 90.96% on two gearbox datasets with extreme imbalance ratios, which proved the superior performance of this approach.

Original languageEnglish
Article number108098
JournalEngineering Applications of Artificial Intelligence
Volume133
DOIs
StatePublished - Jul 2024

Keywords

  • Attention mechanism
  • Data class imbalance
  • Dynamic normalization supervised contrastive learning
  • Gearbox fault diagnosis
  • Multiscale adaptive feature extractor

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